Nowcasting GDP in real time: a density combination approach
Journal article, Peer reviewed
Date
2014Metadata
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- Scientific articles [2221]
Original version
Journal of Business and Economic Statistics, 32(2014)1: 48-68 10.1080/07350015.2013.844155Abstract
In this paper, we use U.S. real-time data to produce combined density nowcasts of
quarterly GDP growth, using a system of three commonly used model classes. We
update the density nowcast for every new data release throughout the quarter, and
highlight the importance of new information for nowcasting. Our results show that
the logarithmic score of the predictive densities for U.S. GDP growth increase almost
monotonically, as new information arrives during the quarter. While the ranking of
the model classes changes during the quarter, the combined density nowcasts always
perform well relative to the model classes in terms of both logarithmic scores and
calibration tests. The density combination approach is superior to a simple model
selection strategy and also performs better in terms of point forecast evaluation than
standard point forecast combinations.
Description
This is the authors’ accepted and refereed manuscript to the article.
Publisher's webpage: www.tandfonline.com
Availability of author's version is delayed until 18 months after first online publication. Unavailable until 2015-06-30. Publisher's policy